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Virtual Network Function Placement Optimization With Deep Reinforcement Learning

机译:虚拟网络功能放置优化与深增强学习

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Network Function Virtualization (NFV) introduces a new network architecture framework that evolves network functions, traditionally deployed over dedicated equipment, to software implementations that run on general-purpose hardware. One of the main challenges for deploying NFV is the optimal resource placement of demanded network services in the NFV infrastructure. The virtual network function placement and network embedding can be formulated as a mathematical optimization problem concerned with a set of feasibility constraints that express the restrictions of the network infrastructure and the services contracted. This problem has been reported to be NP-hard, as a result most of the optimization work carried out in the area has focused on designing heuristic and metaheuristic algorithms. Nevertheless, in highly constrained problems, as in this case, inferring a competitive heuristic can be a daunting task that requires expertise. Consequently, an interesting solution is the use of Reinforcement Learning to model an optimization policy. The work presented here extends the Neural Combinatorial Optimization theory by considering constraints in the definition of the problem. The resulting agent is able to learn placement decisions by exploring the NFV infrastructure with the aim of minimizing the overall power consumption. The experiments conducted demonstrate that when the proposed strategy is also combined with heuristics, highly competitive results are achieved using relatively simple algorithms.
机译:网络功能虚拟化(NFV)介绍了一种新的网络架构框架,它传播传统上部署在专用设备上的网络功能,以及在通用硬件上运行的软件实现。部署NFV的主要挑战之一是NFV基础设施中要求网络服务的最佳资源放置。虚拟网络功能放置和网络嵌入可以被配制为与一组可行性约束相关的数学优化问题,该限制表达了网络基础架构的限制和合同的服务。据报道,该问题是NP-Hard,因此该地区开展的大多数优化工作都集中在设计启发式和成群质算法。然而,在高度约束的问题中,正如在这种情况下,推断竞争激烈的启发式可能是需要专业知识的艰巨任务。因此,有趣的解决方案是利用增强学习来建模优化政策。这里提出的工作通过考虑问题的定义中的约束来扩展神经组合优化理论。所得到的代理能够通过探索NFV基础设施来学习放置决策,目的是最大限度地减少整体功耗。进行的实验表明,当提出的策略也与启发式结合时,使用相对简单的算法实现高度竞争的结果。

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